LPPLS bubble indicators over two centuries of the S&P 500 index
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Date
Authors
Zhang, Qunzhi
Sornette, Didier
Balcilar, Mehmet
Gupta, Rangan
Ozdemir, Zeynel Abidin
Yetkiner, Hakan
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Abstract
The aim of this paper is to present novel tests for the early causal diagnostic of positive
and negative bubbles in the S&P 500 index and the detection of End-of-Bubble signals
with their corresponding confidence levels. We use monthly S&P 500 data covering the
period from August 1791 to August 2014. This study is the first work in the literature
showing the possibility to develop reliable ex-ante diagnostics of the frequent regime
shifts over two centuries of data. We show that the DS LPPLS (log-periodic power law
singularity) approach successfully diagnoses positive and negative bubbles, constructs
efficient End-of-Bubble signals for all of the well-documented bubbles, and obtains for
the first time new statistical evidence of bubbles for some other events. We also compare
the DS LPPLS method to the exponential curve fitting and the generalized sup ADF test
approaches and find that DS LPPLS system is more accurate in identifying well-known
bubble events, with significantly smaller numbers of false negatives and false positives.
Description
Keywords
S&P 500, LPPL method, Stock market bubble, Forecast, Bubble indicators
Sustainable Development Goals
Citation
Zhang, Q, Sornette, D, BalcIlar, M, Gupta, R, Ozdemir, ZA & Yetkiner, H 2016, 'LPPLS bubble indicators over two centuries of the S&P 500 index', Physica A: Statistical Mechanics and its Applications, vol. 458, pp.126-139.